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DNN-based Speech Recognition System dealing with Motor State as Auxiliary Information of DNN for Head Shaking Robot

机译:基于DNN的语音识别系统,将运动状态作为DNN的辅助信息用于摇头机器人

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In this paper, a deep neural network (DNN) based integrated background noise suppression and acoustic modeling for speech recognition proposed in which on/off state of the motor for the head shaking robot is employed as the relevant auxiliary information of the DNN input. Since the motor sound being generated when the robot is moving or shaking its head severely degrades the performance of the speech recognition accuracy, we propose to use the motor on/off state as additional information when designing the DNN-based recognition system. Our speech recognition algorithm consists of two parts including the feature mapping model for feature enhancement and the acoustic model for phoneme recognition. As for the feature mapping, the stacked DNN is designed for the precise feature enhancement such that the lower DNN and upper DNN are trained separately and combined after which the motor state is plugged into both the lower DNN and upper DNN in addition to the input noisy speech. Then, the acoustic model is trained upon the feature enhancement model in which the motor state is again used as the augmented feature. The proposed technique to suppress the acoustic and motor noises was evaluated in term of the phoneme error rate (PER) and showed a significant improvement over the conventional system.
机译:本文提出了一种基于深度神经网络(DNN)的集成背景噪声抑制和声学建模的语音识别方法,其中,将用于摇头机器人的电动机的开/关状态用作DNN输入的相关辅助信息。由于在机器人移动或摇头时产生的马达声音严重降低了语音识别精度的性能,因此我们建议在设计基于DNN的识别系统时使用马达的开/关状态作为附加信息。我们的语音识别算法由两部分组成,包括用于特征增强的特征映射模型和用于音素识别的声学模型。对于特征映射,堆叠的DNN是为精确的特征增强而设计的,以便分别训练下DNN和上DNN并对其进行组合,然后,除了输入噪声外,还将电动机状态插入下DNN和上DNN中演讲。然后,在特征增强模型上训练声学模型,在该特征增强模型中,马达状态再次用作增强特征。根据音素错误率(PER)对提议的抑制声音和电机噪声的技术进行了评估,并显示出与常规系统相比的显着改进。

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